Bayesian multi-level modelling for improved prediction of corrosion growth rate

Domenic Di Francesco*, Marios Chryssanthopoulos, Michael Havbro Faber, Ujjwal Bharadwaj

*Kontaktforfatter

Publikation: Bidrag til bog/antologi/rapport/konference proceedingKonferenceartikel i proceedingForskningpeer review

3 Citationer (Scopus)

Abstract

In pipelines, pressure vessels and various other steel structures, the remaining thickness of a corroding ligament can be measured directly and repeatedly over time. Statistical analysis of these measurements is a common approach for estimating the rate of corrosion growth, where the uncertainties associated with the inspection activity are taken into account. An additional source of variability in such calculations is the epistemic uncertainty associated with the limited number of measurements that are available to engineers at any point in time. Traditional methods face challenges in fitting models to limited or missing datasets. In such cases, deterministic upper bound values, as recommended in industrial guidance, are sometimes assumed for the purpose of integrity management planning. In this paper, Bayesian inference is proposed as a means for representing available information in consistency with evidence. This, in turn, facilitates decision support in the context of risk-informed integrity management. Aggregating inspection data from multiple locations does not account for the possible variability between the locations, and creating fully independent models can result in excessive levels of uncertainty at locations with limited data. Engineers intuitively acknowledge that the areas with more sites of corrosion should, to some extent, inform estimates of growth rates in other locations. Bayesian multi-level (hierarchical) models provide a mathematical basis for achieving this by means of the appropriate pooling of information, based on the homogeneity of the data. Included in this paper is an outline of the process of fitting a Bayesian multi-level model and a discussion of the benefits and challenges of pooling inspection data between distinct locations, using example calculations and simulated data.

OriginalsprogEngelsk
TitelASME 2020 39th International Conference on Ocean, Offshore and Arctic Engineering : Structures, Safety, and Reliability
Antal sider9
Vol/bind2B
ForlagThe American Society of Mechanical Engineers (ASME)
Publikationsdato2020
ArtikelnummerV02BT02A001
ISBN (Elektronisk)978-0-7918-8433-1
DOI
StatusUdgivet - 2020
BegivenhedASME 2020 39th International Conference on Ocean, Offshore and Arctic Engineering, OMAE 2020 - Virtual, Online
Varighed: 3 aug. 20207 aug. 2020

Konference

KonferenceASME 2020 39th International Conference on Ocean, Offshore and Arctic Engineering, OMAE 2020
ByVirtual, Online
Periode03/08/202007/08/2020
SponsorOcean, Offshore and Arctic Engineering Division
NavnProceedings of the International Conference on Offshore Mechanics and Arctic Engineering - OMAE
Vol/bind2B-2020

Bibliografisk note

Funding Information:
This publication was made possible by the sponsorship and support of Lloyd's Register Foundation and the Engineering and Physical Sciences Research Council (EPSRC).

Publisher Copyright:
Copyright © 2020 ASME.

Emneord

  • Bayesian statistics
  • Corrosion growth
  • Information pooling
  • Markov Chain Monte Carlo Sampling
  • Model evaluation
  • Multi-level modelling

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